Different Mechanisms Involved in Adaptation to Stable and Unstable Dynamics
- 1 November 2003
- journal article
- Published by American Physiological Society in Journal of Neurophysiology
- Vol. 90 (5) , 3255-3269
- https://doi.org/10.1152/jn.00073.2003
Abstract
Recently, we demonstrated that humans can learn to make accurate movements in an unstable environment by controlling magnitude, shape, and orientation of the endpoint impedance. Although previous studies of human motor learning suggest that the brain acquires an inverse dynamics model of the novel environment, it is not known whether this control mechanism is operative in unstable environments. We compared learning of multijoint arm movements in a “velocity-dependent force field” (VF), which interacted with the arm in a stable manner, and learning in a “divergent force field” (DF), where the interaction was unstable. The characteristics of error evolution were markedly different in the 2 fields. The direction of trajectory error in the DF alternated to the left and right during the early stage of learning; that is, signed error was inconsistent from movement to movement and could not have guided learning of an inverse dynamics model. This contrasted sharply with trajectory error in the VF, which was initially biased and decayed in a manner that was consistent with rapid feedback error learning. EMG recorded before and after learning in the DF and VF are also consistent with different learning and control mechanisms for adapting to stable and unstable dynamics, that is, inverse dynamics model formation and impedance control. We also investigated adaptation to a rotated DF to examine the interplay between inverse dynamics model formation and impedance control. Our results suggest that an inverse dynamics model can function in parallel with an impedance controller to compensate for consistent perturbing force in unstable environments.Keywords
This publication has 45 references indexed in Scilit:
- Adaptation to Stable and Unstable Dynamics Achieved By Combined Impedance Control and Inverse Dynamics ModelJournal of Neurophysiology, 2003
- The central nervous system stabilizes unstable dynamics by learning optimal impedanceNature, 2001
- Experimental evaluation of nonlinear adaptive controllersIEEE Control Systems, 1998
- Calcification Rates in CoralsScience, 1996
- The Three-Dimensional Curvature of Straight-Ahead MovementsJournal of Motor Behavior, 1996
- Does the cerebellum learn strategies for the optimal time-varying control of joint stiffness?Behavioral and Brain Sciences, 1996
- Equilibrium-Point Control Hypothesis Examined by Measured Arm Stiffness During Multijoint MovementScience, 1996
- Internal representations of the motor apparatus: Implications from generalization in visuomotor learning.Journal of Experimental Psychology: Human Perception and Performance, 1995
- Inverse-dynamics model eye movement control by Purkinje cells in the cerebellumNature, 1993
- Is the Cerebellum a Smith Predictor?Journal of Motor Behavior, 1993